library_name: transformers
datasets:
- IEEEVITPune-AI-Team/chatbotAlpha
language:
- en
Model Card for Model ID
The motivation of this model was to educate the university students about the vast scope that technology has and channeling it via the chatbot we have created. This is just a small step that AI Team at IEEE SB VIT Pune has taken to contribute in the vast space of Artificial Intelligence. As our tagline says, "Advancing Technology for Humanity" we believe that AI can truly revolutionize the tech domain forever and hence we have invested in creating a chatbot.
Model Details
Model Description
This chatbot is curated by the AI Team(2023-24) at IEEE SB VIT Pune. The primary purpose of this bot is answer questions related to Data Structure and Algorithms, FAQs related to IEEE SB VIT Pune, Research paper based questions, Placement based questions and much more.
Developed by: AI Team (2023-24) [Mrunmayee Phadke (Project Head), Hritesh Maikap, Nidhish W, Arya Lokhande, Apurva Kota, Soham Nimale]
Funded by [optional]: IEEE SB VIT Pune
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Model type: Text Generation based model trained on Llama2
Language(s): Python
Finetuned from model [optional]: Llama2
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